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Analysis of the feasibility and advantages of using big data technology for English translation

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Abstract

With the rapid development of science and technology and big data, traditional translation has been greatly tested in the era of big data. The translation ability requires to be endowed with excellent bilingual teaching language ability, rich and diverse translation professional knowledge, sufficient basic translation knowledge, skilled IT technology and computer knowledge, etc., to better shape the translation ability. Based on big data technology, this paper analyzes the feasibility and advantages of using big data technology for English translation by designing a public automatic English translation system and studying the teaching mode of the English translation.

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Data on the results of the study may be obtained from the corresponding author upon reasonable request.

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Funding

Funding was provided by The 14th Five-Year Plan of Jiangxi Provincial Education Science in 2021: An Empirical Study on Foreign Language Learning Anxiety and Intervention of Non-English Majors from a Multi-modal Perspective (Grant number 21YB379)

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Correspondence to Jing Hu.

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Hu, J. Analysis of the feasibility and advantages of using big data technology for English translation. Soft Comput 27, 11755–11766 (2023). https://doi.org/10.1007/s00500-023-07857-y

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